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Fast and Efficient Compression of Floating-Point Data

机译:快速有效地压缩浮点数据

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Large scale scientific simulation codes typically run on a cluster of CPUs that write/read time steps to/from a single file system. As data sets are constantly growing in size, this increasingly leads to I/O bottlenecks. When the rate at which data is produced exceeds the available I/O bandwidth, the simulation stalls and the CPUs are idle. Data compression can alleviate this problem by using some CPU cycles to reduce the amount of data needed to be transfered. Most compression schemes, however, are designed to operate offline and seek to maximize compression, not throughput. Furthermore, they often require quantizing floating-point values onto a uniform integer grid, which disqualifies their use in applications where exact values must be retained. We propose a simple scheme for lossless, online compression of floating-point data that transparently integrates into the I/O of many applications. A plug-in scheme for data-dependent prediction makes our scheme applicable to a wide variety of data used in visualization, such as unstructured meshes, point sets, images, and voxel grids. We achieve state-of-the-art compression rates and speeds, the latter in part due to an improved entropy coder. We demonstrate that this significantly accelerates I/O throughput in real simulation runs. Unlike previous schemes, our method also adapts well to variable-precision floating-point and integer data
机译:大型科学仿真代码通常在一组CPU上运行,这些CPU将时间步长写入单个文件系统或从单个文件系统读取时间步长。随着数据集规模的不断增长,这日益导致I / O瓶颈。当产生数据的速率超过可用的I / O带宽时,模拟将停止并且CPU处于空闲状态。数据压缩可以通过使用一些CPU周期来减少需要传输的数据量来缓解此问题。但是,大多数压缩方案都设计为脱机运行,并寻求最大化压缩而不是吞吐量。此外,它们通常需要将浮点值量化到统一的整数网格上,这使它们在必须保留精确值的应用中无法使用。我们提出了一种无损在线压缩浮点数据的简单方案,该方案透明地集成到许多应用程序的I / O中。数据依赖型预测的插件方案使我们的方案适用于可视化中使用的各种数据,例如非结构化网格,点集,图像和体素网格。我们实现了最新的压缩率和速度,后者的部分原因是由于改进了熵编码器。我们证明,这在实际的模拟运行中大大提高了I / O吞吐量。与以前的方案不同,我们的方法还非常适合于可变精度浮点数和整数数据

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